Trend of incompleteness of the Robson Classification variables in the Live Birth Information (SINASC) in the state of Paraná, Brazil, 2014-2020

ABSTRACT Objective: To assess the incompleteness of the Robson Classification variables in the Live Birth Information System (Sistema de Informação sobre Nascidos Vivos - SINASC), in the state of Paraná, and its trend, 2014-2020. Methods: This was a time-series study that analyzed six variables, according to health macro-regions. Incompleteness was classified (percentage of “ignored” and “blank fields”) as follows: excellent (< 1.0%); good (1.0-2.9%); regular (3.0-6.9%); poor (≥ 7.0%). Prais-Winsten regression was used to estimate trends. Results: A total of 1,089,116 births were evaluated. The variable “cesarean section before the onset of labor” was classified as poor in 2014 (39.4%) and 2015 (44.3%) in the state and in all macro-regions, but with a decreasing trend in incompleteness. The variables “gestational age” in the North and Northwest macro-regions, and “parity” and “number of fetuses” in the Northwest macro-region showed an increasing trend. Conclusion: Most of the variables evaluated showed low percentages of incompleteness with a decreasing trend, but there is a need to improve the completion of some variables.


INTRODUCTION
3] In 2015, the World Health Organization (WHO) proposed its use in all childbirth facilities. 4High cesarean section rates pose a significant health problem, adversely effecting maternal and child health. 5nce 1990, Brazil has employed the Live Birth Information System (Sistema de Informação sobre Nascidos Vivos -SINASC), which collects data from the Live Birth Certificate (LBC).As of 2009, new fields were included in the LBC and, consequently, in the SINASC, [6][7] highlighting the number of weeks of gestation, fetal presentation, and labor induction, automatically generating the Robson Classification.
][9][10][11] Studies conducted in the state of Paraná, between 1996 and 2018, found good information quality, [9][10][11][12] however, not all variables necessary to generate the Robson Classification were assessed, such as the onset of labor and fetal presentation.Paraná state has one of the highest cesarean section rates in the country (62.6%), while the state of Roraima has one of the lowest rates (35.2%). 13,14In 2020, Paraná passed Law No. 20.127, 15 granting women the right to choose the type of delivery, which could impact these statistics.
The objective of this study was to assess the incompleteness of the Robson Classification variables in the SINASC, in the state of Paraná, and its trend from 2014 to 2020.

METHODS
This was a time series study that analyzed seven variables from SINASC in Paraná, a state in southern Brazil with an estimated population of 11,597,484 inhabitants in 2021, which has one of the highest Human Development Index scores and it is one of the largest economies in the country. 16It is organized into four Health Macro-regions (East, West, North and Northwest). 16SINASC database, from 2014 to 2020, was used, available at the www.datasus.gov.br.Data extraction was performed using the TabWin tool (available on the website) on March 3, 2021.
The Robson Classif ication, based on f ive characteristics, classif ies pregnant women into ten groups: groups 1 to 4 -with a lower likelihood of cesarean section; group 5 -with some likelihood; and groups 6 to 10 -with a higher likelihood. 2,3 order to obtain the f ive obstetric characteristics that comprise Robson's Classification 1 , it was necessary to assess the following variables: "onset of labor", which takes into account two variables from LBC/ SINASC: "was labor induced?" and "did cesarean section occur before the onset of labor?"; "fetal presentation"; "parity", related to the variables "number of previous vaginal deliveries" and

Main results
The majority of variables showed a low percentage of incompleteness with a decreasing trend.It is essential to enhance the data completeness for the variables "cesarean section before the onset of labor" and "induced labor".

Implications for services
The low percentage of incompleteness in SINASC data contributes to the good quality of the Robson Classification, which can be used to reduce the high rates of caesarean sections.

Perspectives
Proposal of strategies to ensure good data quality, especially for variables with regular and poor completeness, involving training for data completion and professional qualification for the use of the Robson Classification.
"number of previous cesarean sections" from LBC/SINASC; "gestational age" and "number of fetuses".The names of each variable mentioned above are described in Box 1.
The trend of incompleteness was estimated using Prais-Winsten regression, which corrects

Gestational age
Corresponds to the gestational age at birth.

Number of fetuses
Corresponds to the number of fetuses in that pregnancy: single, twins, triplets or more.GRAVIDEZ = Type of pregnancy.
a) In order to obtain this variable, it was necessary to analyze two variables separately ("Was labor induced?" and "Did cesarean section occur before the onset of labor?"), as they cannot be combined, which justifies the analysis of six variables.

RESEACH NOTE
Robson Classification: incompleteness of variables in the SINASC system

RESULTS
Between 2014 and 2020, a total of

DISCUSSION
In an unprecedented approach, the quality of data completion for variables comprising the Robson Classification in the SINASC system in Paraná state was assessed.Among the key findings, the variable "cesarean section before the onset of labor" stood out with poor incompleteness, but a decreasing trend, indicating improvement in data completion."Induced labor" showed poor and regular classif ication in the East and West macroregions, respectively, but with a decreasing trend in incompleteness.0][11] Three variables showed an increasing trend in incompleteness in two health macro-regions (Northwest and North).
The poor incompleteness of the variable "cesarean section before the onset of labor" in all macro-regions in 2014 and 2015 could be partially justified by the fact that these were the first years of assessing this variable, which was included in SINASC in 2011.However, a national analysis found regular completion (70-90%) of this variable in 2015, but good completion (90-95%) of other variables included in 2011, 7 indicating the need for periodic training to improve data completion in LBC and SINASC.
The persistence of higher percentages of incompleteness in the East and West macroregions throughout the study period may be linked to regional disparities within the state, such as the low prenatal care coverage in regions with lower socioeconomic status, found in some health macro-regions of the state.This reveals that economic factors impact health investment and professional training. 17,18 order to enhance the generation of the Robson Classification in the SINASC system, aiming to contribute to the reduction of cesarean section rates, it is essential to improve the filling in of the variables "cesarean section before the onset of labor" and "induced labor", which are related to the characteristic "onset of labor".It is worth highlighting that only one study evaluating the data completion quality of these variables was identified in the literature, and found similar results. 7Therefore, further studies on data completion quality of these variables should be conducted.
Most of the variables analyzed showed very low percentage of incompleteness, corroborating the results of a national study that assessed SINASC data for over 3 million births that occurred in 2002, where Paraná state presented low percentages. 8In fact, a study that evaluated the quality of other variables on the SINASC, in Paraná, over a 22year period (1996 to 2018), showed very low incompleteness percentage in the state, 12 recommending the use of this information system. 19,20In addition, the law passed in Paraná in 2020, 15 may have contributed to an increase in cesarean section rates in the state, leading to reflection on crucial aspects, such as legislation and political decisions that strongly influence health indicators.
T h e re s u l t s o b t a i n e d re p re s e n t a n advancement compared to previous studies conducted in the state of Paraná, 8,9,12 between 1996 and 2018, as they analyzed all the variables necessary for the automatic generation of the Robson Classification in SINASC.Despite being one of the information systems with the most satisfactory quality in the country, [8][9][10][11][21][22][23] analyses stratified by health macro-regions in the state revealed significant differences, emphasizing the need for training and periodic evaluations related to this topic.
In 2009, the completion of "gestational age" variable was changed to completed weeks of gestation.According to a literature review that analyzed studies published from 2010 to 2018, this variable shows the highest percentages of incompleteness. 21In Mato Grosso, there was an increasing trend of incompleteness for this variable in 2011-2012, 10 as observed in the North and Northwest macro-regions of Paraná, a result also observed in the Northeast region of Brazil, even with the use of a different scale. 24he " number of fetuses" showed an incompleteness percentage below 1% in all the years studied, similar to f indings in Recife. 25However, the increasing trend in incompleteness for this variable, as well as for the variable "parity" identified in this study, indicates the need for attention to these variables.
One limitation of this study is the use of secondary data, subject to the reliability of information f illed in by professionals, which may include errors and diff iculties in data completion.Despite this, the study of the variables that generate the Robson Classification in the SINASC system and its analysis is fundamental, as it enables the identif ication of the groups of pregnant women most likely to undergo cesarean section, contributing to the implementation of strategies aimed at reducing cesarean section rates. 2,26us, the evaluation of the incompleteness of the Robson Classification variables in the SINASC system in the state of Paraná and its trend stands out as a strong point, as it showed that the majority of variables presented low percentages of incompleteness and a decreasing trend, although, improvement in the completion of the "parity", "gestational age" and "number of fetuses" variables, is still necessary.These variables showed an increasing trend especially in the Northwest macro-region.This diagnosis can support the implementation of public policies by directing strategies for the continuous improvement of SINASC, through periodic analyses and training for those involved.It is worth highlighting that in addition to having an information system with adequate completion, success in reducing cesarean sections requires political will, along with the implementation of comprehensive measures, legislation and public policies.
for residual temporal autocorrelation.The trend was interpreted as follows: stationary (p-value > 0.05); decreasing [p-value < 0.05 and negative regression coefficient (β1)] or increasing [p-value < 0.05 and positive regression coefficient (β1)].The analyses were performed according to health macro-regions, using the Stata software, version 13.Although using publicly available secondary data, this study was approved by the Research Ethics Committee of the Escola de Enfermagem da Universidade de São Paulo (CAAE 58854522.1.0000.5392).

Box 1 -
Characteristics used to compose the Robson Classification, their definitions and designations in the Live Birth Information System (Sistema de Informações sobre Nascidos Vivos -Position of the fetus in the womb: cephalic, breech or transverse.TPAPRESENT = Type of fetal presentation.Parity Nulliparous: has never given birth.Multiparous: has given birth at least once.QTDPARTNOR = Number of previous vaginal deliveries.QTDPARTCES = Number of previous caesarean sections.

Table 2 -
Trend of incompleteness of the variables from SINASC used for the Robson Classification, average annual percentage change and confidence interval according to health macro-regions, state of Paraná, Brazil, 2014-2020 a) Average annual percentage change of incompleteness rates of variables calculated from the β1 of the Prais-Winsten generalized linear regression model.b) 95%CI: 95% confidence interval.

Table 1 -Percentage of incompleteness of variables from the Live Birth Information System (SINAN) used to compose the Robson Classification, according to health macro-regions, state of Paraná, Brazil, 2014-2020Table 2 -Trend of incompleteness of the variables from SINASC used for the Robson Classification, average annual percentage change and confidence interval according to health macro-regions, state of Paraná, Brazil, 2014-2020
a) Classification: excellent (< 1.0%); good (1.0% to 2.9%); regular (3.0% to 6.9%); poor (≥ 7.0%).